2021
DOI: 10.48550/arxiv.2102.09507
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Regular Expressions for Fast-response COVID-19 Text Classification

Igor L. Markov,
Jacqueline Liu,
Adam Vagner

Abstract: Text classifiers are at the core of many NLP applications and use a variety of algorithmic approaches and software. This paper describes how Facebook determines if a given piece of text -anything from a hashtag to a post -belongs to a narrow topic such as COVID-19. To fully define a topic and evaluate classifier performance we employ human-guided iterations of keyword discovery, but do not require labeled data. For COVID-19, we build two sets of regular expressions: (1) for 66 languages, with 99% precision and… Show more

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